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首页> 外文期刊>European Journal of Soil Science >Airborne radiometric survey data and a DTM as covariates for regional scale mapping of soil organic carbon across Northern Ireland
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Airborne radiometric survey data and a DTM as covariates for regional scale mapping of soil organic carbon across Northern Ireland

机译:机载辐射测量数据和DTM作为协变量,用于北爱尔兰土壤有机碳的区域比例尺制图

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摘要

Soil scientists require cost-effective methods to make accurate regional predictions of soil organic carbon (SOC) content. We assess the suitability of airborne radiometric data and digital elevation data as covariates to improve the precision of predictions of SOC from an intensive survey in Northern Ireland. Radiometric data (K band) and, to a lesser extent, altitude are shown to increase the precision of SOC predictions when they are included in linear mixed models of SOC variation. However thestatistical distribution of SOC in Northern Ireland is bimodal and therefore unsuitable for geostatistical analysis unless the two peaks can be accounted for by the fixed effects in the linear mixed models. The upper peak in the distribution is due to areas of peat soils. This problem may be partly countered if soil maps are used to classify areas of Northern Ireland according to their expected SOC content and then different models are fitted to each of these classes. Here we divide the soil in NorthernIreland into three classes, namely mineral, organo-mineral and peat. This leads to a further increase in the precision of SOC predictions and the median square error is 2.2 %(2). However a substantial number of our observations appear to be mis-classified and therefore the mean squared error in the predictions is larger (30.6 %(2)) since it is dominated by large errors due to mis-classification. Further improvement in SOC prediction may therefore be possible if better delineation between areas of largeSOC (peat) and small SOC (non-peat) could be achieved.
机译:土壤科学家需要经济有效的方法来对土壤有机碳(SOC)含量进行准确的区域预测。我们评估机载辐射数据和数字高程数据作为协变量的适用性,以提高北爱尔兰进行的深入调查得出的SOC预测精度。当将放射线数据(K波段)和高度(较小程度)显示在SOC变化的线性混合模型中时,可以提高SOC预测的精度。但是,北爱尔兰SOC的统计分布是双峰的,因此不适合进行地统计分析,除非线性混合模型中的固定效应可以解释这两个峰。分布中的最高峰是由于泥炭土的面积。如果使用土壤图根据北爱尔兰的预期SOC含量对北爱尔兰地区进行分类,然后对每个类别进行不同的拟合,则可以部分解决此问题。在这里,我们将北部爱尔兰的土壤分为三类,即矿物质,有机矿物质和泥炭。这导致SOC预测精度的进一步提高,中位数平方误差为2.2%(2)。但是,我们的大量观察似乎被错误分类,因此预测中的均方误差更大(30.6%(2)),因为它主要是由于错误分类导致的大误差所致。如果可以在大SOC(豌豆)和小SOC(非豌豆)之间实现更好的划分,则可以进一步改善SOC预测。

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